Department of Computer Science, University of Brasília, Brasília, Brazil.
Biomedical Informatics Department, Emory University, Atlanta, USA; Department of Biomedical Engineering, Emory-Georgia Institute of Technology, Atlanta, USA; Department of Mathematics and Statistics, Georgia State University, Atlanta, USA.
Comput Methods Programs Biomed. 2021 Sep;208:106291. doi: 10.1016/j.cmpb.2021.106291. Epub 2021 Jul 24.
Computerized pathology image analysis is an important tool in research and clinical settings, which enables quantitative tissue characterization and can assist a pathologist's evaluation. The aim of our study is to systematically quantify and minimize uncertainty in output of computer based pathology image analysis.
Uncertainty quantification (UQ) and sensitivity analysis (SA) methods, such as Variance-Based Decomposition (VBD) and Morris One-At-a-Time (MOAT), are employed to track and quantify uncertainty in a real-world application with large Whole Slide Imaging datasets - 943 Breast Invasive Carcinoma (BRCA) and 381 Lung Squamous Cell Carcinoma (LUSC) patients. Because these studies are compute intensive, high-performance computing systems and efficient UQ/SA methods were combined to provide efficient execution. UQ/SA has been able to highlight parameters of the application that impact the results, as well as nuclear features that carry most of the uncertainty. Using this information, we built a method for selecting stable features that minimize application output uncertainty.
The results show that input parameter variations significantly impact all stages (segmentation, feature computation, and survival analysis) of the use case application. We then identified and classified features according to their robustness to parameter variation, and using the proposed features selection strategy, for instance, patient grouping stability in survival analysis has been improved from in 17% and 34% for BRCA and LUSC, respectively.
This strategy created more robust analyses, demonstrating that SA and UQ are important methods that may increase confidence digital pathology.
计算机化病理图像分析是研究和临床环境中的重要工具,它能够实现组织的定量特征描述,并辅助病理学家进行评估。我们的研究目的是系统地量化和最小化基于计算机的病理图像分析输出的不确定性。
采用不确定性量化(UQ)和敏感性分析(SA)方法,如基于方差的分解(VBD)和莫尔斯单变量(MOAT),对具有大全切片成像数据集的真实应用(943 例乳腺浸润性癌(BRCA)和 381 例肺鳞状细胞癌(LUSC)患者)进行跟踪和量化不确定性。由于这些研究计算密集,因此结合了高性能计算系统和高效的 UQ/SA 方法以提供高效的执行。UQ/SA 能够突出影响结果的应用程序参数,以及携带大部分不确定性的核特征。利用这些信息,我们构建了一种选择稳定特征的方法,以最小化应用程序输出的不确定性。
结果表明,输入参数变化显著影响应用程序的所有阶段(分割、特征计算和生存分析)。然后,我们根据参数变化的稳健性对特征进行了识别和分类,并使用提出的特征选择策略,例如,生存分析中的患者分组稳定性分别提高了 17%和 34%,对于 BRCA 和 LUSC。
该策略创建了更稳健的分析,表明 SA 和 UQ 是提高数字病理学可信度的重要方法。